基于协方差矩阵、相关性和任意分布的检验统计量的网络推理和社区检测

E. Thomas
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引用次数: 1

摘要

在本文中,我们提出了从网络节点对或更一般的变量对之间的关联强度的各种度量中推断二值邻接矩阵的方法。这种关联强度可以通过样本协方差和相关矩阵来量化,更普遍的是通过任意分布的检验统计和假设检验p值来量化。社区检测方法,如块建模,通常需要二值邻接矩阵作为起点。因此,我们提出的方法的主要动机是从变量之间的关联强度的这种成对测量中获得二值邻接矩阵。所提出的方法适用于大型高维数据集,并且基于计算效率高的算法。我们将说明它在一系列上下文和数据集中的实用性。
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Network Inference and Community Detection, Based on Covariance Matrices, Correlations and Test Statistics from Arbitrary Distributions
In this paper we propose methodology for inference of binary-valued adjacency matrices from various measures of the strength of association between pairs of network nodes, or more generally pairs of variables. This strength of association can be quantified by sample covariance and correlation matrices, and more generally by test-statistics and hypothesis test p-values from arbitrary distributions. Community detection methods such as block modelling typically require binary-valued adjacency matrices as a starting point. Hence, a main motivation for the methodology we propose is to obtain binary-valued adjacency matrices from such pairwise measures of strength of association between variables. The proposed methodology is applicable to large high-dimensional data-sets and is based on computationally efficient algorithms. We illustrate its utility in a range of contexts and data-sets.
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